Open Access
June 2017 Robust and scalable Bayesian analysis of spatial neural tuning function data
Kamiar Rahnama Rad, Timothy A. Machado, Liam Paninski
Ann. Appl. Stat. 11(2): 598-637 (June 2017). DOI: 10.1214/16-AOAS996

Abstract

A common analytical problem in neuroscience is the interpretation of neural activity with respect to sensory input or behavioral output. This is typically achieved by regressing measured neural activity against known stimuli or behavioral variables to produce a “tuning function” for each neuron. Unfortunately, because this approach handles neurons individually, it cannot take advantage of simultaneous measurements from spatially adjacent neurons that often have similar tuning properties. On the other hand, sharing information between adjacent neurons can errantly degrade estimates of tuning functions across space if there are sharp discontinuities in tuning between nearby neurons. In this paper, we develop a computationally efficient block Gibbs sampler that effectively pools information between neurons to denoise tuning function estimates while simultaneously preserving sharp discontinuities that might exist in the organization of tuning across space. This method is fully Bayesian, and its computational cost per iteration scales sub-quadratically with total parameter dimensionality. We demonstrate the robustness and scalability of this approach by applying it to both real and synthetic datasets. In particular, an application to data from the spinal cord illustrates that the proposed methods can dramatically decrease the experimental time required to accurately estimate tuning functions.

Citation

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Kamiar Rahnama Rad. Timothy A. Machado. Liam Paninski. "Robust and scalable Bayesian analysis of spatial neural tuning function data." Ann. Appl. Stat. 11 (2) 598 - 637, June 2017. https://doi.org/10.1214/16-AOAS996

Information

Received: 1 July 2015; Revised: 1 October 2016; Published: June 2017
First available in Project Euclid: 20 July 2017

zbMATH: 06775885
MathSciNet: MR3693539
Digital Object Identifier: 10.1214/16-AOAS996

Keywords: Bayesian , Computational neuroscience , posterior sampling , scalability and robustness , spatial statistics

Rights: Copyright © 2017 Institute of Mathematical Statistics

Vol.11 • No. 2 • June 2017
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